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Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing

Lipid nanoparticles (LNPs) are gaining traction in the field of nucleic acid delivery following the success of two mRNA vaccines against COVID-19. As one of the constituent lipids on LNP surfaces, PEGylated lipids (PEG-lipids) play an important role in defining LNP physicochemical properties and bio...

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Autores principales: Sarode, Apoorva, Fan, Yuchen, Byrnes, Amy E., Hammel, Michal, Hura, Greg L., Fu, Yige, Kou, Ponien, Hu, Chloe, Hinz, Flora I., Roberts, Jasmine, Koenig, Stefan G., Nagapudi, Karthik, Hoogenraad, Casper C., Chen, Tao, Leung, Dennis, Yen, Chun-Wan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: RSC 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9417559/
https://www.ncbi.nlm.nih.gov/pubmed/36133441
http://dx.doi.org/10.1039/d1na00712b
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author Sarode, Apoorva
Fan, Yuchen
Byrnes, Amy E.
Hammel, Michal
Hura, Greg L.
Fu, Yige
Kou, Ponien
Hu, Chloe
Hinz, Flora I.
Roberts, Jasmine
Koenig, Stefan G.
Nagapudi, Karthik
Hoogenraad, Casper C.
Chen, Tao
Leung, Dennis
Yen, Chun-Wan
author_facet Sarode, Apoorva
Fan, Yuchen
Byrnes, Amy E.
Hammel, Michal
Hura, Greg L.
Fu, Yige
Kou, Ponien
Hu, Chloe
Hinz, Flora I.
Roberts, Jasmine
Koenig, Stefan G.
Nagapudi, Karthik
Hoogenraad, Casper C.
Chen, Tao
Leung, Dennis
Yen, Chun-Wan
author_sort Sarode, Apoorva
collection PubMed
description Lipid nanoparticles (LNPs) are gaining traction in the field of nucleic acid delivery following the success of two mRNA vaccines against COVID-19. As one of the constituent lipids on LNP surfaces, PEGylated lipids (PEG-lipids) play an important role in defining LNP physicochemical properties and biological interactions. Previous studies indicate that LNP performance is modulated by tuning PEG-lipid parameters including PEG size and architecture, carbon tail type and length, as well as the PEG-lipid molar ratio in LNPs. Owing to these numerous degrees of freedom, a high-throughput approach is necessary to fully understand LNP behavioral trends over a broad range of PEG-lipid variables. To this end, we report a low-volume, automated, high-throughput screening (HTS) workflow for the preparation, characterization, and in vitro assessment of LNPs loaded with a therapeutic antisense oligonucleotide (ASO). A library of 54 ASO-LNP formulations with distinct PEG-lipid compositions was prepared using a liquid handling robot and assessed for their physiochemical properties as well as gene silencing efficacy in murine cortical neurons. Our results show that the molar ratio of anionic PEG-lipid in LNPs regulates particle size and PEG-lipid carbon tail length controls ASO-LNP gene silencing activity. ASO-LNPs formulated using PEG-lipids with optimal carbon tail lengths achieved up to 5-fold lower mRNA expression in neurons as compared to naked ASO. Representative ASO-LNP formulations were further characterized using dose–response curves and small-angle X-ray scattering to understand structure–activity relationships. Identified hits were also tested for efficacy in primary murine microglia and were scaled-up using a microfluidic formulation technique, demonstrating a smooth translation of ASO-LNP properties and in vitro efficacy. The reported HTS workflow can be used to screen additional multivariate parameters of LNPs with significant time and material savings, therefore guiding the selection and scale-up of optimal formulations for nucleic acid delivery to a variety of cellular targets.
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spelling pubmed-94175592022-09-20 Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing Sarode, Apoorva Fan, Yuchen Byrnes, Amy E. Hammel, Michal Hura, Greg L. Fu, Yige Kou, Ponien Hu, Chloe Hinz, Flora I. Roberts, Jasmine Koenig, Stefan G. Nagapudi, Karthik Hoogenraad, Casper C. Chen, Tao Leung, Dennis Yen, Chun-Wan Nanoscale Adv Chemistry Lipid nanoparticles (LNPs) are gaining traction in the field of nucleic acid delivery following the success of two mRNA vaccines against COVID-19. As one of the constituent lipids on LNP surfaces, PEGylated lipids (PEG-lipids) play an important role in defining LNP physicochemical properties and biological interactions. Previous studies indicate that LNP performance is modulated by tuning PEG-lipid parameters including PEG size and architecture, carbon tail type and length, as well as the PEG-lipid molar ratio in LNPs. Owing to these numerous degrees of freedom, a high-throughput approach is necessary to fully understand LNP behavioral trends over a broad range of PEG-lipid variables. To this end, we report a low-volume, automated, high-throughput screening (HTS) workflow for the preparation, characterization, and in vitro assessment of LNPs loaded with a therapeutic antisense oligonucleotide (ASO). A library of 54 ASO-LNP formulations with distinct PEG-lipid compositions was prepared using a liquid handling robot and assessed for their physiochemical properties as well as gene silencing efficacy in murine cortical neurons. Our results show that the molar ratio of anionic PEG-lipid in LNPs regulates particle size and PEG-lipid carbon tail length controls ASO-LNP gene silencing activity. ASO-LNPs formulated using PEG-lipids with optimal carbon tail lengths achieved up to 5-fold lower mRNA expression in neurons as compared to naked ASO. Representative ASO-LNP formulations were further characterized using dose–response curves and small-angle X-ray scattering to understand structure–activity relationships. Identified hits were also tested for efficacy in primary murine microglia and were scaled-up using a microfluidic formulation technique, demonstrating a smooth translation of ASO-LNP properties and in vitro efficacy. The reported HTS workflow can be used to screen additional multivariate parameters of LNPs with significant time and material savings, therefore guiding the selection and scale-up of optimal formulations for nucleic acid delivery to a variety of cellular targets. RSC 2022-02-04 /pmc/articles/PMC9417559/ /pubmed/36133441 http://dx.doi.org/10.1039/d1na00712b Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Sarode, Apoorva
Fan, Yuchen
Byrnes, Amy E.
Hammel, Michal
Hura, Greg L.
Fu, Yige
Kou, Ponien
Hu, Chloe
Hinz, Flora I.
Roberts, Jasmine
Koenig, Stefan G.
Nagapudi, Karthik
Hoogenraad, Casper C.
Chen, Tao
Leung, Dennis
Yen, Chun-Wan
Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title_full Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title_fullStr Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title_full_unstemmed Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title_short Predictive high-throughput screening of PEGylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
title_sort predictive high-throughput screening of pegylated lipids in oligonucleotide-loaded lipid nanoparticles for neuronal gene silencing
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9417559/
https://www.ncbi.nlm.nih.gov/pubmed/36133441
http://dx.doi.org/10.1039/d1na00712b
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